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Main Authors: Wang, Jing, Zhang, Fengzhuo, Li, Xiaoli, Tan, Vincent Y. F., Pang, Tianyu, Du, Chao, Sun, Aixin, Yang, Zhuoran
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.10704
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author Wang, Jing
Zhang, Fengzhuo
Li, Xiaoli
Tan, Vincent Y. F.
Pang, Tianyu
Du, Chao
Sun, Aixin
Yang, Zhuoran
author_facet Wang, Jing
Zhang, Fengzhuo
Li, Xiaoli
Tan, Vincent Y. F.
Pang, Tianyu
Du, Chao
Sun, Aixin
Yang, Zhuoran
contents Auto-Regressive Video Diffusion Models (AR-VDMs) have shown strong capabilities in generating long, photorealistic videos, but suffer from two key limitations: (i) history forgetting, where the model loses track of previously generated content, and (ii) temporal degradation, where frame quality deteriorates over time. Yet a rigorous theoretical analysis of these phenomena is lacking, and existing empirical understanding remains insufficiently grounded. In this paper, we introduce Meta-ARVDM, a unified analytical framework that studies both errors through the shared autoregressive structure of AR-VDMs. We show that history forgetting is characterized by the conditional mutual information between the generated output and preceding frames, conditioned on inputs, and prove that incorporating more past frames monotonically alleviates history forgetting, thereby theoretically justifying a common belief in existing works. Moreover, our theory reveals that standard metrics fail to capture this effect, motivating a new evaluation protocol based on a ``needle-in-a-haystack'' task in closed-ended environments (DMLab and Minecraft). We further show that temporal degradation can be quantified by the cumulative sum of per-step errors, enabling prediction of degradation for different schedulers without video rollout. Finally, our evaluation uncovers a strong empirical correlation between history forgetting and temporal degradation, a connection not previously reported.
format Preprint
id arxiv_https___arxiv_org_abs_2503_10704
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Error Analyses of Auto-Regressive Video Diffusion Models: A Unified Framework
Wang, Jing
Zhang, Fengzhuo
Li, Xiaoli
Tan, Vincent Y. F.
Pang, Tianyu
Du, Chao
Sun, Aixin
Yang, Zhuoran
Computer Vision and Pattern Recognition
Multimedia
Auto-Regressive Video Diffusion Models (AR-VDMs) have shown strong capabilities in generating long, photorealistic videos, but suffer from two key limitations: (i) history forgetting, where the model loses track of previously generated content, and (ii) temporal degradation, where frame quality deteriorates over time. Yet a rigorous theoretical analysis of these phenomena is lacking, and existing empirical understanding remains insufficiently grounded. In this paper, we introduce Meta-ARVDM, a unified analytical framework that studies both errors through the shared autoregressive structure of AR-VDMs. We show that history forgetting is characterized by the conditional mutual information between the generated output and preceding frames, conditioned on inputs, and prove that incorporating more past frames monotonically alleviates history forgetting, thereby theoretically justifying a common belief in existing works. Moreover, our theory reveals that standard metrics fail to capture this effect, motivating a new evaluation protocol based on a ``needle-in-a-haystack'' task in closed-ended environments (DMLab and Minecraft). We further show that temporal degradation can be quantified by the cumulative sum of per-step errors, enabling prediction of degradation for different schedulers without video rollout. Finally, our evaluation uncovers a strong empirical correlation between history forgetting and temporal degradation, a connection not previously reported.
title Error Analyses of Auto-Regressive Video Diffusion Models: A Unified Framework
topic Computer Vision and Pattern Recognition
Multimedia
url https://arxiv.org/abs/2503.10704